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Data-Driven Measurement Tampering Detection Considering Spatial-Temporal Correlations

机译:考虑时空相关的数据驱动测量篡改检测

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Cyber-attackers could stealthily interfere with the normal operation of power systems by maliciously tampering the measurements transmitted from field devices to control centers. Although some data-driven methods capable of identifying abnormal measurements have been proposed, there are some remaining shortcomings such as low accuracy and slow convergence rate. This paper devises a novel framework by combining convolutional neural networks (CNN) and long-short-term memory (LSTM) networks for detecting tampering attacks based on recognizing spatial-temporal correlations between measurements. Besides, optimization such as the attention mechanism, Dropout layers and SVM are applied to improve the performance of the proposed framework. This paper also introduces how to implement the proposed framework in practical cyber-physical systems and expounds the synergistic relationships between the data-driven detector and the traditional bad data detection module. Case studies prove that the proposed framework has better learning performance than existing ones.
机译:网络攻击者可能通过恶意篡改从现场设备传输到控制中心的测量值,来秘密地干扰电力系统的正常运行。尽管已经提出了一些能够识别异常测量结果的数据驱动方法,但是仍然存在一些缺陷,例如准确性低和收敛速度慢。本文通过结合卷积神经网络(CNN)和长短期记忆(LSTM)网络,设计了一种新颖的框架,用于通过识别测量值之间的时空相关性来检测篡改攻击。此外,还采用了注意力机制,Dropout层和SVM等优化措施来改善所提出框架的性能。本文还介绍了如何在实际的网络物理系统中实施所提出的框架,并阐述了数据驱动检测器与传统不良数据检测模块之间的协同关系。案例研究证明,提出的框架比现有框架具有更好的学习性能。

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